基于人工智能的沙特阿拉伯人面部对称美学评估。

IF 1.1 4区 医学 Q3 SURGERY Facial Plastic Surgery Pub Date : 2024-11-11 DOI:10.1055/a-2464-3717
Mohammad Khursheed Alam, Ahmed Ali Alfawzan
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引用次数: 0

摘要

研究目的材料和方法:210 名来自不同人口背景的人参加了在一家医院进行的观察性横断面研究。采用分层随机抽样方法,使用佳能相机拍摄了脸部和微笑的标准姿势照片。采用人工智能 Webceph 软件(韩国)对宏观、微观和微小的美学因素进行评估。数据分析采用配对 t 检验、事后 Bonferroni 检验、方差分析和描述性统计。通过计算类内相关系数(ICC)来评估人工智能评价的可靠性:结果:所有变量的 ICC 均大于 0.97,表明基于人工智能的评估具有极高的可靠性。在Ⅰ类和Ⅲ类错颌畸形组之间,右下颌体长度存在显著差异(p < 0.001),Ⅲ类患者的数值更大。虽然其他特征没有发现明显变化,但配对 t 检验显示,左右两侧下颌体长度存在明显差异(p = 0.001)。在 III 类错牙合畸形中,下颌偏离方向明显偏向右侧(p = 0.005)。这些结果表明,人工智能能够准确识别与面部美学相关的一些解剖特征,尤其是在区分 III 类错颌畸形时:总之,通过人工智能对沙特阿拉伯人面部对称性的评估显示出高度的可靠性和一致性。值得注意的是,右侧下颌骨的长度已成为区分错颌畸形等级的关键特征。这项研究强调了人工智能可如何提高面部美学评估的准确性,以及我们对与错颌畸形有关的面部特征的了解。
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Artificial intelligence-based [A.I.] assessment of Facial symmetry aesthetics of Saudi Arabian population.

Objective: The purpose of this study is to investigate the facial symmetry aesthetics (FSA) in the Saudi Arabian population using AI.

Materials and methods: 210 people from a range of demographic backgrounds participated in an observational cross-sectional study that was done at a hospital. Standardized posed photos of the face and smile were taken using a Canon camera utilizing a stratified random sample approach. A Webceph software (Korea) with artificial intelligence was used to evaluate macro, micro, and tiny aesthetic factors. The data were analyzed using paired t-tests, posthoc Bonferroni testing, ANOVA, and descriptive statistics. The computation of intra-class correlation coefficients (ICCs) was utilized to assess the dependability of AI evaluations.

Results: All variables had ICCs more than 0.97, indicating exceptional dependability for the AI-based evaluations. Between the Class I and Class III malocclusion groups, there were significant variations in right mandibular body length (p < 0.001), with Class III patients exhibiting greater values. While no significant changes were identified for other characteristics, paired t-tests showed a significant divergence in mandibular body length between the right and left sides (p = 0.001). In Class III malocclusion, there was a significant preference for right deviation in the direction of mandibular deviation (p = 0.005). These results imply that AI is capable of accurately identifying some anatomical characteristics associated with face aesthetics, especially when it comes to differentiating between Class III malocclusions.

Conclusion: In conclusion, the Saudi Arabian population's facial symmetry assessments via AI have demonstrated a high degree of reliability and consistency. Notably, the length of the mandible on the right side has emerged as a crucial feature in discriminating between malocclusion classes. The study emphasises how AI might improve the accuracy of assessments of face aesthetics and our knowledge of facial features connected to malocclusion.

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来源期刊
Facial Plastic Surgery
Facial Plastic Surgery 医学-外科
CiteScore
1.80
自引率
10.00%
发文量
87
审稿时长
6-12 weeks
期刊介绍: Facial Plastic Surgery is a journal that publishes topic-specific issues covering areas of aesthetic and reconstructive plastic surgery as it relates to the head, neck, and face. The journal''s scope includes issues devoted to scar revision, periorbital and mid-face rejuvenation, facial trauma, facial implants, rhinoplasty, neck reconstruction, cleft palate, face lifts, as well as various other emerging minimally invasive procedures. Authors provide a global perspective on each topic, critically evaluate recent works in the field, and apply it to clinical practice.
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